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Bayesian network probability model for weather prediction

机译:贝叶斯网络概率模型用于天气预报

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Weather forecasting is important for various areas. In this paper, weather forecasting system is presented based on Bayesian network (BN) model. Bayesian networks, or belief networks, show conditional probability and causality relationships between variables. This work applies BN to model the spatial dependencies among the different meteorological variables for weather (rainfall and temperature) prediction over Myanmar. In this work, regional and global weather data which are contributing to rainfall prediction of Myanmar are used for rainfall prediction. Then, inference ability of BN approximate inference algorithm in weather prediction is analyzed with experiments over independent test data sets. For model training and testing, collected historical records of weather stations between 1990 and 2006 are used. We report prediction accuracy of our model with empirical results.
机译:天气预报对于各个地区都很重要。本文提出了一种基于贝叶斯网络(BN)模型的天气预报系统。贝叶斯网络或信念网络显示变量之间的条件概率和因果关系。这项工作应用国阵来为缅甸的天气(降雨和温度)预报建模不同气象变量之间的空间依赖性。在这项工作中,将有助于缅甸降雨量预报的区域和全球天气数据用于降雨量预报。然后,通过独立测试数据集上的实验,分析了BN近似推理算法在天气预报中的推理能力。为了进行模型训练和测试,使用了1990年至2006年之间收集的气象站历史记录。我们用经验结果报告模型的预测准确性。

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